Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain

Automatic methods of ontology alignment are essential for establishing interoperability across web services. These methods are needed to measure semantic similarity between two ontologies’ entities to discover reliable correspondences. While existing similarity measures suffer from some difficulties...

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Main Authors: Pesaranghader, Ahmad, Rezaei, Azadeh, Pesaranghader, Ali
Format: Conference or Workshop Item
Language:English
Published: Springer 2013
Online Access:http://psasir.upm.edu.my/id/eprint/60363/
http://psasir.upm.edu.my/id/eprint/60363/1/Adapting%20gloss%20vector%20semantic%20relatedness%20measure%20for%20semantic%20similarity%20estimation%20an%20evaluation%20in%20the%20biomedical%20domain.pdf
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author Pesaranghader, Ahmad
Rezaei, Azadeh
Pesaranghader, Ali
author_facet Pesaranghader, Ahmad
Rezaei, Azadeh
Pesaranghader, Ali
author_sort Pesaranghader, Ahmad
building UPM Institutional Repository
collection Online Access
description Automatic methods of ontology alignment are essential for establishing interoperability across web services. These methods are needed to measure semantic similarity between two ontologies’ entities to discover reliable correspondences. While existing similarity measures suffer from some difficulties, semantic relatedness measures tend to yield better results; even though they are not completely appropriate for the ‘equivalence’ relationship (e.g. “blood” and “bleeding” related but not similar). We attempt to adapt Gloss Vector relatedness measure for similarity estimation. Generally, Gloss Vector uses angles between entities’ gloss vectors for relatedness calculation. After employing Pearson’s chi-squared test for statistical elimination of insignificant features to optimize entities’ gloss vectors, by considering concepts’ taxonomy, we enrich them for better similarity measurement. Discussed measures get evaluated in the biomedical domain using MeSH, MEDLINE and dataset of 301 concept pairs. We conclude Adapted Gloss Vector similarity results are more correlated with human judgment of similarity compared to other measures.
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format Conference or Workshop Item
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institution Universiti Putra Malaysia
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language English
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publishDate 2013
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spelling upm-603632018-05-21T03:27:27Z http://psasir.upm.edu.my/id/eprint/60363/ Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain Pesaranghader, Ahmad Rezaei, Azadeh Pesaranghader, Ali Automatic methods of ontology alignment are essential for establishing interoperability across web services. These methods are needed to measure semantic similarity between two ontologies’ entities to discover reliable correspondences. While existing similarity measures suffer from some difficulties, semantic relatedness measures tend to yield better results; even though they are not completely appropriate for the ‘equivalence’ relationship (e.g. “blood” and “bleeding” related but not similar). We attempt to adapt Gloss Vector relatedness measure for similarity estimation. Generally, Gloss Vector uses angles between entities’ gloss vectors for relatedness calculation. After employing Pearson’s chi-squared test for statistical elimination of insignificant features to optimize entities’ gloss vectors, by considering concepts’ taxonomy, we enrich them for better similarity measurement. Discussed measures get evaluated in the biomedical domain using MeSH, MEDLINE and dataset of 301 concept pairs. We conclude Adapted Gloss Vector similarity results are more correlated with human judgment of similarity compared to other measures. Springer 2013 Conference or Workshop Item PeerReviewed text en http://psasir.upm.edu.my/id/eprint/60363/1/Adapting%20gloss%20vector%20semantic%20relatedness%20measure%20for%20semantic%20similarity%20estimation%20an%20evaluation%20in%20the%20biomedical%20domain.pdf Pesaranghader, Ahmad and Rezaei, Azadeh and Pesaranghader, Ali (2013) Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain. In: Third Joint International Semantic Technology Conference (JIST 2013), 28-30 Nov. 2013, Seoul, South Korea. (pp. 129-145). 10.1007/978-3-319-06826-8_11
spellingShingle Pesaranghader, Ahmad
Rezaei, Azadeh
Pesaranghader, Ali
Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain
title Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain
title_full Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain
title_fullStr Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain
title_full_unstemmed Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain
title_short Adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain
title_sort adapting gloss vector semantic relatedness measure for semantic similarity estimation: an evaluation in the biomedical domain
url http://psasir.upm.edu.my/id/eprint/60363/
http://psasir.upm.edu.my/id/eprint/60363/
http://psasir.upm.edu.my/id/eprint/60363/1/Adapting%20gloss%20vector%20semantic%20relatedness%20measure%20for%20semantic%20similarity%20estimation%20an%20evaluation%20in%20the%20biomedical%20domain.pdf